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Connecting Communities for Biosurveillance

Connecting Communities for Biosurveillance. Creating Real-Time Clinical Connections. David Groves, MBA Vice President, Public Health Informatics Science Applications International Corporation. BioSense Data Provisioning. Bridging Healthcare and Public Health. LOCAL PUBLIC HEALTH. Epidemic

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Connecting Communities for Biosurveillance

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  1. Connecting Communities for Biosurveillance Creating Real-Time Clinical Connections David Groves, MBA Vice President, Public Health Informatics Science Applications International Corporation

  2. BioSense Data Provisioning

  3. Bridging Healthcare and Public Health LOCAL PUBLIC HEALTH

  4. Epidemic (Symptoms) 30000 Outcomes (Casualties/ Fatalities) Potential Infections: Exposure 20000 Number Affected 10000 Incubation 0 0 2 4 6 8 10 12 5 10 15 20 25 Hours Early Detection Days Situational Awareness Health Data for Detection and Response

  5. Biosurveillance Requirements • Data Agreements • Data Standards • Vocabulary Standards and Coding • Message Standards • Maintaining the integrity of patient record • Privacy by de-identification or anonymization • Timeliness of reporting • Secure and reliable connectivity

  6. Specifies • Data • Coded Terminology • Messaging Structures

  7. Hospital Census and Utilization Patient Demographic and Visit Data Clinical Problems, Observations and Diagnoses Laboratory Orders and Results Microbiology, Serology, Immunology Radiology Orders and Results Diagnostic exams for pneumonias and fractures Medication Orders Prefer Pharmacy encoded orders BioSense Data Types of Interest

  8. Coded Terminology Standards • Improving semantic interoperablity • Consolidated Health Informatics Recommeded Stanandards • Managed by the CDC PHIN Vocabulary Services • Drawn from several standards organizations • Health Level 7 (HL7) • ICD-9-CM • CPT • LOINC • SNOMED CT

  9. Vocabulary Coding Samples • Patient Class: PHVS_PatientClass_HL7_2x • Diagnosis Type: PHVS_DiagnosisType_HL7_2x • Observations: LOINC • Identified Organisms: SNOMED

  10. Message Standards  HL7 V2.5 Standard • Admit, Discharge and Transfer Messages (partial) • ADT^A01 – Patient Admission • ADT^A04 – Patient Registration • ADT^A08 – Patient Update • Order Message • ORM^O01 – General Order • Result Message • ORU^R01 – Unsolicited Observations • ORU^R01 – Census Report • Pharmacy Order • OMP^O09 – Medication Order

  11. HL7 Message Example • HL7 Data Type: CE – Coded Element • Std Code+ Std Description+ Std Code System OID + Local Code+Local Description+Local Code System • OBX – Observation Result Segment • OBX -2 => Data Type (CE – Coded Element) • OBX-3 => Observation / Test Name (LOINC) • OBX-5 =>Lab result (SNOMED CT) OBX||CE|5887-5^Virus Throat Culture^2.16.840.1.113883.6.1^VCLT^Virus Culture^Local ||407479009^Influenza A Virus^2.16.840.1.113883.6.96 ^INFA^Influenza A^Local|

  12. Coded Terminology Mapped at Sender Site OBX||CE|^^^VCLT^Virus Culture^Local ||^^^INFA^Influenza A^Local| OBX||CE|5887-5^Virus Throat Culture^2.16.840.1.113883.6.1^VCLT^Virus Culture^Local ||407479009^Influenza A Virus^2.16.840.1.113883.6.96 ^INFA^Influenza A^Local|

  13. Data Acquisition Options • HL7 Messaging Intercept • Real-Time • Transactional – based on trigger events • Collects data already in motion in the healthcare enterprise • Lends itself well to HL7 v2.x messaging • Clinical Case Report • Periodic reporting • Summary of all relevant data types • Extracts data at rest – in clinical databases • Lends itself more to HL7 v3.0 messaging

  14. Centralized Patient Data Repository Data is Constantly Moving In Hospitals ED System ADT System Lab System Hospital Interface Hub Biosurveillance Pharmacy System Radiology System Inpatient Care System

  15. Coding Tables BioSense Linker 5 3 2 4 1 BioSense Message Intercept Solution Hospital Interface Hub Filter BioSense Integrator HL7 Batches PHIN MS Out Queue  Batch/ Send Map Vocabulary De-ID Filter Xform HL7 Messages   LOCAL PUBLIC HEALTH

  16. BioSense Data Provisioning Lessons Learned • Hospitals are very keen on solutions that do not impact production applications • Implementation timeline of 5 months is needed for all data types • A loosely coupled, queue-based architecture is essential to reliability • ADT data have proven to be straight forward • ED data often locked in departmental EDIS • Chief Complaint • ED Discharge Diagnosis • Vitals • Triage Notes • Coded diagnosis latency of 3 to 5 days for ED and IP

  17. BioSense Data Provisioning Laboratory Challenges • Laboratory messaging varies widely in quality • Text and formatted text rather than coded results • Laboratory section frequently not identified on a result • Patient and provider information contained in the text • Test ordered by code with no description • LOINC and SNOMED mapping tables must be built

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